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A Computational Approach towards Visual Object Recognition at Taxonomic Levels of Concepts

机译:分类学概念水分水平视觉对象识别的计算方法

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摘要

It has been argued that concepts can be perceived at three main levels of abstraction. Generally, in a recognition system, object categories can be viewed at three levels of taxonomic hierarchy which are known as superordinate, basic, and subordinate levels. For instance, "horse" is a member of subordinate level which belongs to basic level of "animal" and superordinate level of "natural objects." Our purpose in this study is to take an investigation into visual features at each taxonomic level. We first present a recognition tree which is more general in terms of inclusiveness with respect to visual representation of objects. Then we focus on visual feature definition, that is, how objects from the same conceptual category can be visually represented at each taxonomic level. For the first level we define global features based on frequency patterns to illustrate visual distinctions among artificial and natural. In contrast, our approach for the second level is based on shape descriptors which are defined by recruiting moment based representation. Finally, we show how conceptual knowledge can be utilized for visual feature definition in order to enhance recognition of subordinate categories.
机译:有人认为,概念可以在三个主要的抽象层面被察觉。通常,在识别系统中,可以以三个级别的分类层级查看对象类别,称为上级,基本和从属级别。例如,“马”是从属水平的成员,属于“动物”的基本水平和“天然物体的上级水平”。我们本研究中的目的是在每个分类水平的视觉特征进行调查。我们首先介绍一个识别树,这在对物体的视觉表示的含量方面更为一般。然后我们专注于可视化特征定义,即如何在每个分类水平上视觉上表示来自相同概念类别的对象。对于第一级,我们根据频率模式定义全局特征,以说明人工和自然之间的视觉区别。相反,我们对第二级的方法基于形状描述符,其通过招募基于时刻的表示来定义。最后,我们展示了概念知识如何用于可视化特征定义,以便提高对从属类别的识别。

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